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Realization and Demonstration of Enhanced Korean High-speed Train Navigation System with Noise Filtering Schemes

  • Hyunwoo Ko
  • Youngbo Shim
  • Seung-Hyun Kong
Regular Paper Control Theory and Applications
  • 48 Downloads

Abstract

A precise train navigation system for Korean high-speed trains having a maximum speed of 400km/h or higher was developed in 2015. The navigation system employs multi-sensor fusion technique, and until now, the target performance of 1-meter instantaneous positioning accuracy in all environments including the Global Positioning System (GPS)-denied environments such as tunnels has been demonstrated using only simulations for various scenarios. In this paper, we demonstrate that the train navigation system achieves the target positioning accuracy in real train environments, which is the first train navigation system that the performance of sub-meter accuracy is demonstrated with real data in the literature. We also introduce additional filtering schemes applied to the various sensors of the train navigation system to enhance the sensor data corrupted by large unexpected noises often observed in the train environments. The train navigation system is properly modified for real train environments to employ the filtering schemes.

Keywords

Global positioning system high-speed train inertial navigation system navigation noise filtering sensor fusion 

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Copyright information

© Institute of Control, Robotics and Systems and The Korean Institute of Electrical Engineers and Springer-Verlag GmbH Germany, part of Springer Nature 2018

Authors and Affiliations

  1. 1.CCS Graduate School for Green Transportation at the Korea Advanced Institute of Science and Technology (KAIST)DaejeonKorea

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